Bayesian Inference and Maximum Entropy Methods in Science and Engineering : : MaxEnt 37, Jarinu, Brazil, July 09–14, 2017

Mentés helye:
Bibliográfiai részletek
Testületi szerző:
Közreműködő(k):
Különgyűjtemény:e-book
Formátum: könyv
Nyelv:angol
Megjelenés: Cham : : Springer International Publishing : : Imprint: Springer,, 2018
Kiadás:1st ed. 2018.
Sorozat:Springer Proceedings in Mathematics & Statistics,, ISSN 2194-1009 ; ; 239
Tárgyszavak:
Online elérés:https://doi.org/10.1007/978-3-319-91143-4
Címkék: Új címke
A tételhez itt fűzhet saját címkét!
id opac-EUL01-000979262
collection e-book
institution L_200
EUL01
spelling Bayesian Inference and Maximum Entropy Methods in Science and Engineering : MaxEnt 37, Jarinu, Brazil, July 09–14, 2017 edited by Adriano Polpo, Julio Stern, Francisco Louzada, Rafael Izbicki, Hellinton Takada.
1st ed. 2018.
Cham : Springer International Publishing : Imprint: Springer, 2018
XVI, 304 p. 70 illus., 44 illus. in color. online forrás
szöveg txt rdacontent
számítógépes c rdamedia
távoli hozzáférés cr rdacarrier
szövegfájl PDF rda
Springer Proceedings in Mathematics & Statistics, 2194-1009 ; 239
Ariel Caticha,Quantum phases in entropic dynamics -- Ali Mohammad-Djafari,Bayesian Approach to Variable Splitting - Link with ADMM Methods -- Afonso Vaz,Prior shift using the Ratio Estimator -- Camila B. Martins,Bayesian meta-analytic measure -- Diego Marcondes,Feature Selection from Local Lift Dependence based Partitions -- Dirk Nille,Probabilistic Inference of Surface Heat Flux Densities from Infrared Thermography -- Donald Spector,Schrödinger's Zebra: Applying Mutual Information Maximization to Graphical Halftoning -- Geert Verdoolaege,Regression of Fluctuating System Properties: Baryonic Tully-Fisher Scaling in Disk Galaxies -- Hellinton Takada,Bayesian Portfolio Optimization for Electricity Generation Planning -- Jony Pinto Junior,Bayesian variable selection methods for log-Gaussian Cox processes -- Keith Earle,Effect of Hindered Diffusion on the Parameter Sensitivity of Magnetic Resonance Spectra -- Leandro Ferreira,The random Bernstein polynomial smoothing via ABC method -- Nestor Caticha,Mean Field studies of a society of interacting agents -- Marcio Diniz,The beginnings of axiomatic subjective probability -- Mircea Dumitru,Model selection in the sparsity context for inverse problems in Bayesian framework -- Milene Farhat,Sample Size Calculation using Decision Theory -- Nathália Moura,Utility for Significance Tests -- Paulo Hubert,Probabilistic equilibria: a review on the application of MAXENT to macroeconomic models -- Paulo Hubert,Full bayesian approach for signal detection with an application to boat detection on underwater soundscape data -- Patricio Maturana,Bayesian support for Evolution: detecting phylogenetic signal in a subset of the primate family -- Rafael Catoia Pulgrossi,A comparison of two methods for obtaining a collective posterior distribution -- Rafael Console,A nonparametric Bayesian approach for the two-sample problem -- Thais Fonseca,Covariance modeling for multivariate spatial processes based on separable approximations --
These proceedings from the 37th International Workshop on Bayesian Inference and Maximum Entropy Methods in Science and Engineering (MaxEnt 2017), held in São Carlos, Brazil, aim to expand the available research on Bayesian methods and promote their application in the scientific community. They gather research from scholars in many different fields who use inductive statistics methods, and focus on the foundations of the Bayesian paradigm, their comparison to objectivistic or frequentist statistics counterparts, and their appropriate applications. Interest in the foundations of inductive statistics has been growing with the increasing availability of Bayesian methodological alternatives, and scientists now face much more difficult choices in finding the optimal methods to apply to their problems. By carefully examining and discussing the relevant foundations, the scientific community can avoid applying Bayesian methods on a merely ad hoc basis. For over 35 years, the MaxEnt workshops have explored the use of Bayesian and Maximum Entropy methods in scientific and engineering application contexts. The workshops welcome contributions on all aspects of probabilistic inference, including novel techniques and applications, and work that sheds new light on the foundations of inference. Areas of application in these workshops include astronomy and astrophysics, chemistry, communications theory, cosmology, climate studies, earth science, fluid mechanics, genetics, geophysics, machine learning, materials science, medical imaging, nanoscience, source separation, thermodynamics (equilibrium and non-equilibrium), particle physics, plasma physics, quantum mechanics, robotics, and the social sciences. Bayesian computational techniques such as Markov chain Monte Carlo sampling are also regular topics, as are approximate inferential methods. Foundational issues involving probability theory and information theory, as well as novel applications of inference to illuminate
Nyomtatott kiadás: ISBN 9783319911427
Nyomtatott kiadás: ISBN 9783319911441
Nyomtatott kiadás: ISBN 9783030081867
Az e-könyvek a teljes ELTE IP-tartományon belül online elérhetők.
könyv
e-book
Statistics. EUL10000081563 Y
Mathematical statistics. EUL10000079757 Y
Thermodynamics. EUL10000360898 Y
Statistical methods.
Statistics for Engineering, Physics, Computer Science, Chemistry and Earth Sciences.
Statistical Theory and Methods.
Biostatistics.
elektronikus könyv
Polpo, Adriano. szerkesztő edt http://id.loc.gov/vocabulary/relators/edt
Stern, Julio. szerkesztő edt http://id.loc.gov/vocabulary/relators/edt
Louzada, Francisco. szerkesztő edt http://id.loc.gov/vocabulary/relators/edt
Izbicki, Rafael. szerkesztő edt http://id.loc.gov/vocabulary/relators/edt
Takada, Hellinton. szerkesztő edt http://id.loc.gov/vocabulary/relators/edt
SpringerLink (Online service) közreadó testület
Springer Proceedings in Mathematics & Statistics, 2194-1009 ; 239 EUL10000991764 Y
Online változat https://doi.org/10.1007/978-3-319-91143-4
EUL01
language English
format Book
author2 Polpo, Adriano., szerkesztő
Stern, Julio., szerkesztő
Louzada, Francisco., szerkesztő
Izbicki, Rafael., szerkesztő
Takada, Hellinton., szerkesztő
author_facet Polpo, Adriano., szerkesztő
Stern, Julio., szerkesztő
Louzada, Francisco., szerkesztő
Izbicki, Rafael., szerkesztő
Takada, Hellinton., szerkesztő
SpringerLink (Online service), közreadó testület
author_corporate SpringerLink (Online service), közreadó testület
author_sort Polpo, Adriano.
title Bayesian Inference and Maximum Entropy Methods in Science and Engineering : MaxEnt 37, Jarinu, Brazil, July 09–14, 2017
spellingShingle Bayesian Inference and Maximum Entropy Methods in Science and Engineering : MaxEnt 37, Jarinu, Brazil, July 09–14, 2017
Springer Proceedings in Mathematics & Statistics,, ISSN 2194-1009 ; ; 239
Statistics.
Mathematical statistics.
Thermodynamics.
Statistical methods.
Statistics for Engineering, Physics, Computer Science, Chemistry and Earth Sciences.
Statistical Theory and Methods.
Thermodynamics.
Biostatistics.
elektronikus könyv
title_sub MaxEnt 37, Jarinu, Brazil, July 09–14, 2017
title_short Bayesian Inference and Maximum Entropy Methods in Science and Engineering :
title_full Bayesian Inference and Maximum Entropy Methods in Science and Engineering : MaxEnt 37, Jarinu, Brazil, July 09–14, 2017 edited by Adriano Polpo, Julio Stern, Francisco Louzada, Rafael Izbicki, Hellinton Takada.
title_fullStr Bayesian Inference and Maximum Entropy Methods in Science and Engineering : MaxEnt 37, Jarinu, Brazil, July 09–14, 2017 edited by Adriano Polpo, Julio Stern, Francisco Louzada, Rafael Izbicki, Hellinton Takada.
title_full_unstemmed Bayesian Inference and Maximum Entropy Methods in Science and Engineering : MaxEnt 37, Jarinu, Brazil, July 09–14, 2017 edited by Adriano Polpo, Julio Stern, Francisco Louzada, Rafael Izbicki, Hellinton Takada.
title_auth Bayesian Inference and Maximum Entropy Methods in Science and Engineering : MaxEnt 37, Jarinu, Brazil, July 09–14, 2017
title_sort bayesian inference and maximum entropy methods in science and engineering maxent 37 jarinu brazil july 09 14 2017
series Springer Proceedings in Mathematics & Statistics,, ISSN 2194-1009 ; ; 239
series2 Springer Proceedings in Mathematics & Statistics,
publishDate 2018
publishDateSort 2018
physical XVI, 304 p. 70 illus., 44 illus. in color. : online forrás
edition 1st ed. 2018.
isbn 978-3-319-91143-4
issn 2194-1009 ;
callnumber-first Q - Science
callnumber-subject QA - Mathematics
callnumber-label QA276-280
callnumber-raw 979262
callnumber-search 979262
topic Statistics.
Mathematical statistics.
Thermodynamics.
Statistical methods.
Statistics for Engineering, Physics, Computer Science, Chemistry and Earth Sciences.
Statistical Theory and Methods.
Thermodynamics.
Biostatistics.
elektronikus könyv
topic_facet Statistics.
Mathematical statistics.
Thermodynamics.
Statistical methods.
Statistics for Engineering, Physics, Computer Science, Chemistry and Earth Sciences.
Statistical Theory and Methods.
Thermodynamics.
Biostatistics.
elektronikus könyv
Statistics.
Mathematical statistics.
Thermodynamics.
Statistical methods.
Statistics for Engineering, Physics, Computer Science, Chemistry and Earth Sciences.
Statistical Theory and Methods.
Biostatistics.
url https://doi.org/10.1007/978-3-319-91143-4
illustrated Not Illustrated
dewey-hundreds 500 - Science
dewey-tens 510 - Mathematics
dewey-ones 519 - Probabilities & applied mathematics
dewey-full 519.5
dewey-sort 3519.5
dewey-raw 519.5
dewey-search 519.5
first_indexed 2023-12-26T23:12:17Z
last_indexed 2023-12-29T19:17:07Z
recordtype opac
publisher Cham : : Springer International Publishing : : Imprint: Springer,
_version_ 1786641203305906176
score 13,368427
generalnotes These proceedings from the 37th International Workshop on Bayesian Inference and Maximum Entropy Methods in Science and Engineering (MaxEnt 2017), held in São Carlos, Brazil, aim to expand the available research on Bayesian methods and promote their application in the scientific community. They gather research from scholars in many different fields who use inductive statistics methods, and focus on the foundations of the Bayesian paradigm, their comparison to objectivistic or frequentist statistics counterparts, and their appropriate applications. Interest in the foundations of inductive statistics has been growing with the increasing availability of Bayesian methodological alternatives, and scientists now face much more difficult choices in finding the optimal methods to apply to their problems. By carefully examining and discussing the relevant foundations, the scientific community can avoid applying Bayesian methods on a merely ad hoc basis. For over 35 years, the MaxEnt workshops have explored the use of Bayesian and Maximum Entropy methods in scientific and engineering application contexts. The workshops welcome contributions on all aspects of probabilistic inference, including novel techniques and applications, and work that sheds new light on the foundations of inference. Areas of application in these workshops include astronomy and astrophysics, chemistry, communications theory, cosmology, climate studies, earth science, fluid mechanics, genetics, geophysics, machine learning, materials science, medical imaging, nanoscience, source separation, thermodynamics (equilibrium and non-equilibrium), particle physics, plasma physics, quantum mechanics, robotics, and the social sciences. Bayesian computational techniques such as Markov chain Monte Carlo sampling are also regular topics, as are approximate inferential methods. Foundational issues involving probability theory and information theory, as well as novel applications of inference to illuminate